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main boise_tutorial_beta1
Bill Ladwig 7 years ago
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      doc/source/tutorials/boise_2018.rst

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doc/source/tutorials/boise_2018.rst

@ -128,26 +128,6 @@ system. @@ -128,26 +128,6 @@ system.
For more information, see: https://conda.io/miniconda.html
.. note::
**What is Miniconda?**
If you have used the Anaconda distribution for Python before, then you will
be familiar with Miniconda. The Anaconda Python distribution includes numerous
scientific packages out of the box, which can be difficult for users to build and
install. More importantly, Anaconda includes the conda package manager.
The conda package manager is a utility (similar to yum or apt-get) that installs
packages from a repository of pre-compiled Python packages. These repositories
are called channels. Conda makes it easy for Python users to install and
uninstall packages, and also can be used to create isolated Python environments
(more on that later).
Miniconda is a bare bones implementation of Anaconda and only includes the
conda package manager. Since we are going to use the conda-forge channel to
install our scientific packages, Miniconda avoids any complications between
packages provided by Anaconda and conda-forge.
Step 2: Install Miniconda
^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^
@ -220,7 +200,7 @@ Mac and Linux: @@ -220,7 +200,7 @@ Mac and Linux:
Step 3: Set Up the Conda Environment
--------------------------------------
^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^
If you are new to the conda package manager, one of the nice features of conda
is that you can create isolated Python environments that prevent package
@ -315,7 +295,7 @@ Follow the instructions below to create the tutorial_backup environment. @@ -315,7 +295,7 @@ Follow the instructions below to create the tutorial_backup environment.
Step 4: Download the Student Workbook
---------------------------------------
^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^
The student workbook for the tutorial is available on GitHub. The tutorial_backup
conda environment includes the git application needed to download the repository.
@ -380,7 +360,7 @@ To download the student workbook, follow these instructions: @@ -380,7 +360,7 @@ To download the student workbook, follow these instructions:
Step 5: Verify Your Environment
----------------------------------
^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^
Verifying that your environment is correct involves importing a few
packages and checking for errors (you may see some warnings for matplotlib
@ -404,18 +384,12 @@ or xarray, but you can safely ignore these). @@ -404,18 +384,12 @@ or xarray, but you can safely ignore these).
4. You can exit the Python interpreter using **CTRL + D**
Step 6: Obtain WRF Output Files
----------------------------------
Step 6: Install WRF Output Files
^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^
A link will be provided in an email prior to the tutorial for the WRF-ARW
data files used for the examples. If you did not receive this email, the link
will also be provided at the tutorial itself.
You also have the option of using your own data files for the tutorial by
modifying the first Jupyter Notebook cell to point to your data set.
However, there is no guarantee that every cell in your workbook will work
without some modifications (e.g. cross section lines will be drawn outside of
your domain).
data files used for the examples.
1. The link in the email should take you to a location on an Amazon cloud
drive.

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